# Find numbers within a range bisect python

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I have a list of integer numbers and I want to write a function that returns a subset of numbers that are within a range. Something like NumbersWithinRange(list, interval) function name...

I.e.,

``````list = [4,2,1,7,9,4,3,6,8,97,7,65,3,2,2,78,23,1,3,4,5,67,8,100]
interval = [4,20]
results = NumbersWithinRange(list, interval)  # [4,4,6,8,7,8]
``````

maybe i forgot to write one more number in results, but that's the idea...

The list can be as big as 10/20 million length, and the range is normally of a few 100.

Any suggestions on how to do it efficiently with python - I was thinking to use bisect.

Thanks.

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You should not use `list` as a variable name. Python lets you (silently) reassign the built-in list constructor if you do... – the wolf Aug 24 '12 at 14:38
correct. it was just for the example, i wouldn't use that name in code. thanks for the correction. – Dnaiel Aug 24 '12 at 15:28

I would use numpy for that, especially if the list is that long. For example:

``````In [101]: list = np.array([4,2,1,7,9,4,3,6,8,97,7,65,3,2,2,78,23,1,3,4,5,67,8,100])
In [102]: list
Out[102]:
array([  4,   2,   1,   7,   9,   4,   3,   6,   8,  97,   7,  65,   3,
2,   2,  78,  23,   1,   3,   4,   5,  67,   8, 100])
In [103]: good = np.where((list > 4) & (list < 20))
In [104]: list[good]
Out[104]: array([7, 9, 6, 8, 7, 5, 8])

# %timeit says that numpy is MUCH faster than any list comprehension:
# create an array 10**6 random ints b/w 0 and 100
In [129]: arr = np.random.randint(0,100,1000000)
In [130]: interval = xrange(4,21)
In [126]: %timeit r = [x for x in arr if x in interval]
1 loops, best of 3: 14.2 s per loop

In [136]: %timeit good = np.where((list > 4) & (list < 20)) ; new_list = list[good]
100 loops, best of 3: 10.8 ms per loop

In [134]: %timeit r = [x for x in arr if 4 < x < 20]
1 loops, best of 3: 2.22 s per loop

In [142]: %timeit filtered = [i for i in ifilter(lambda x: 4 < x < 20, arr)]
1 loops, best of 3: 2.56 s per loop
``````
-
 `a[(4 <= a) & (a < 21)]` should work too – J.F. Sebastian Aug 24 '12 at 14:19 Indeed, even easier. – reptilicus Aug 24 '12 at 14:22 How does the list comprehension do when you use `4 <= x <= 20` instead of `x in interval`? Checking if the value is in an `xrange` iterator is going to slow things down. – chepner Aug 24 '12 at 14:27 yeah, its faster by a factor of 6, but still about 4 orders of magnitude slower than numpy – reptilicus Aug 24 '12 at 14:34 Ah, yes, I see now. I wasn't paying close attention to the units (s vs ms). numpy is indeed very much faster. – chepner Aug 24 '12 at 14:50
show 5 more comments

If the list isn't sorted, you need to scan the entire list:

``````lst = [ 4,2,1,...]
interval=[4,20]
results = [ x for x in lst if interval[0] <= x <= interval[1] ]
``````

If the list is sorted, you can use `bisect` to find the left and right indices that bound your range.

``````left = bisect.bisect_left(lst, interval[0])
right = bisect.bisect_right(lst, interval[1])

results = lst[left+1:right]
``````

Since scanning the list is O(n) and sorting is O(n lg n), it probably is not worth sorting the list just to use `bisect` unless you plan on doing lots of range extractions.

-
 yes, I am planning on doing 100 or more million's of extractions, does it sound realistic or it'd take forever? – Dnaiel Aug 24 '12 at 15:32 Hard to say, but use the numpy answer, as it is far faster than a pure-python solution. – chepner Aug 24 '12 at 15:34

Let's create a list similar to what you described:

``````import random
l = [random.randint(-100000,100000) for i in xrange(1000000)]
``````

Now test some possible solutions:

``````interval=range(400,800)

def v2():
""" return a list """
return [i for i in l if i in interval]

def v3():
""" return a generator """
return list((i for i in l if i in interval))

def v4():
def te(x):
return x in interval

return filter(te,l)

def v5():
return [i for i in ifilter(lambda x: x in interval, l)]

print len(v2()),len(v3()), len(v4()), len(v5())
cmpthese.cmpthese([v2,v3,v4,v5],micro=True, c=2)
``````

Prints this:

``````   rate/sec   usec/pass   v5    v4    v2    v3
v5        0 6929225.922   -- -0.4% -1.0% -1.6%
v4        0 6903028.488 0.4%    -- -0.6% -1.2%
v2        0 6861472.487 1.0%  0.6%    -- -0.6%
v3        0 6817855.477 1.6%  1.2%  0.6%    --
``````

HOWEVER, watch what happens if `interval` is a set instead of a list:

``````interval=set(range(400,800))
cmpthese.cmpthese([v2,v3,v4,v5],micro=True, c=2)

rate/sec  usec/pass     v5     v4     v3     v2
v5        5 201332.569     -- -20.6% -62.9% -64.6%
v4        6 159871.578  25.9%     -- -53.2% -55.4%
v3       13  74769.974 169.3% 113.8%     --  -4.7%
v2       14  71270.943 182.5% 124.3%   4.9%     --
``````

Now comparing with numpy:

``````na=np.array(l)

def v7():
""" assume you have to convert from list => numpy array and return a list """
arr=np.array(l)
tgt = np.where((arr >= 400) & (arr < 800))
return [arr[x] for x in tgt][0].tolist()

def v8():
""" start with a numpy list but return a python list """
tgt = np.where((na >= 400) & (na < 800))
return na[tgt].tolist()

def v9():
""" numpy all the way through """
tgt = np.where((na >= 400) & (na < 800))
return [na[x] for x in tgt][0]
# or return na[tgt] if you prefer that syntax...

cmpthese.cmpthese([v2,v3,v4,v5, v7, v8,v9],micro=True, c=2)

rate/sec  usec/pass      v5      v4      v7     v3     v2     v8     v9
v5        5 185431.957      --  -17.4%  -24.7% -63.3% -63.4% -93.6% -93.6%
v4        7 153095.007   21.1%      --   -8.8% -55.6% -55.7% -92.3% -92.3%
v7        7 139570.475   32.9%    9.7%      -- -51.3% -51.4% -91.5% -91.5%
v3       15  67983.985  172.8%  125.2%  105.3%     --  -0.2% -82.6% -82.6%
v2       15  67861.438  173.3%  125.6%  105.7%   0.2%     -- -82.5% -82.5%
v8       84  11850.476 1464.8% 1191.9% 1077.8% 473.7% 472.6%     --  -0.0%
v9       84  11847.973 1465.1% 1192.2% 1078.0% 473.8% 472.8%   0.0%     --
``````

Clearly numpy is faster than pure python as long as you can work with numpy all the way through. Otherwise, use a set for the interval to speed up a bit...

-
That's not a fair comparison. `v3` doesn't actually do any of the work. You would need to compare `v2` with a version of `v3` which actually builds the list. – DSM Aug 24 '12 at 14:38
@DSM: fixed v3 to be a fair comparison – the wolf Aug 24 '12 at 16:18

I think this should be sufficiently efficient:

``````>>> nums = [4,2,1,7,9,4,3,6,8,97,7,65,3,2,2,78,23,1,3,4,5,67,8,100]
>>> r = [x for x in nums if 4 <= x <21]
>>> r
[4, 7, 9, 4, 6, 8, 7, 4, 5, 8]
``````

Edit:

After J.F. Sebastian's excellent observation, modified the code.

-
Thats going to work, but be slow if the list really is of order 10^6 – reptilicus Aug 24 '12 at 14:12
Its not clarified if the list is sorted; if it is then bisect should be faster. – Burhan Khalid Aug 24 '12 at 14:25
`i in xrange` is not optimized (unlike `i in range` on Python 3). It is the same as `i in iterable` i.e., it enumerates the values one by one. So `4 <= x < 21` should be used instead – J.F. Sebastian Aug 24 '12 at 14:28

Using iterators

``````>>> from itertools import ifilter
>>> A = [4,2,1,7,9,4,3,6,8,97,7,65,3,2,2,78,23,1,3,4,5,67,8,100]
>>> [i for i in ifilter(lambda x: 4 < x < 20, A)]
[7, 9, 6, 8, 7, 5, 8]
``````
-

I think you are looking for something like this..

``````b=[i for i in a if 4<=i<90]
print sorted(set(b))
[4, 5, 6, 7, 8, 9, 23, 65, 67, 78]
``````
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